Individualized Net Benefit estimation and meta‐analysis using generalized pairwise comparisons in N‐of‐1 trials

Author:

Giai Joris12ORCID,Péron Julien234ORCID,Roustit Matthieu5,Cracowski Jean‐Luc5,Roy Pascal23,Ozenne Brice67ORCID,Buyse Marc89,Maucort‐Boulch Delphine23

Affiliation:

1. Univ. Grenoble Alpes Inserm CIC1406, CHU Grenoble Alpes, TIMC UMR 5525 Grenoble France

2. Université de Lyon Université Lyon 1, CNRS, UMR 5558, Laboratoire de Biométrie et Biologie Évolutive, Équipe Biostatistique‐Santé Villeurbanne France

3. Hospices Civils de Lyon Pôle Santé Publique, Service de Biostatistique – Bioinformatique Lyon France

4. Hospices Civils de Lyon Oncology department Pierre‐Bénite France

5. Univ. Grenoble Alpes Inserm CIC1406, CHU Grenoble Alpes, HP2 Inserm U1300 Grenoble France

6. Neurobiology Research Unit, Rigshospitalet Copenhagen Denmark

7. University of Copenhagen Department of Public Health, Section of Biostatistics Copenhagen Denmark

8. International Drug Development Institute (IDDI) San Francisco California USA

9. Interuniversity Institute for Biostatistics and statistical Bioinformatics (I‐Biostat) Hasselt University Hasselt Belgium

Abstract

BackgroundThe Net Benefit (Δ) is a measure of the benefit‐risk balance in clinical trials, based on generalized pairwise comparisons (GPC) using several prioritized outcomes and thresholds of clinical relevance. We extended Δ to N‐of‐1 trials, with a focus on patient‐level and population‐level Δ.MethodsWe developed a Δ estimator at the individual level as an extension of the stratum‐specific Δ, and at the population‐level as an extension of the stratified Δ. We performed a simulation study mimicking PROFIL, a series of 38 N‐of‐1 trials testing sildenafil in Raynaud's phenomenon, to assess the power for such an analysis with realistic data. We then reanalyzed PROFIL using GPC. This reanalysis was finally interpreted in the context of the main analysis of PROFIL which used Bayesian individual probabilities of efficacy.ResultsSimulations under the null showed good size of the test for both individual and population levels. The test lacked power when being simulated from the true PROFIL data, even when increasing the number of repetitions up to 140 days per patient. PROFIL individual‐level estimated Δ were well correlated with the probabilities of efficacy from the Bayesian analysis while showing similarly wide confidence intervals. Population‐level estimated Δ was not significantly different from zero, consistently with the previous Bayesian analysis.ConclusionGPC can be used to estimate individual Δ which can then be aggregated in a meta‐analytic way in N‐of‐1 trials. GPC ability to easily incorporate patient preferences allow for more personalized treatment evaluation, while needing much less computing time than Bayesian modeling.

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

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